M-estimation and Quantile Estimation in the Presence of Auxiliary Information under Strong Mixing Sample
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Graphical Abstract
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Abstract
In this paper, we apply the empirical likelihood technique to propose a new class of M-estimators and quantile estimators in the presence of some auxiliary information under strong mixing samples. It is shown that the proposed M-estimators and quantile estimators are consistent and asymptotically normally distributed with smaller asymptotic variances than those of the usual M-estimators and quantile estimators.
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